A network operation center may receive video data, sensor data and third-party data for a situation that a police officer or security service personnel has been called to. Using the video data, a sentiment analysis engine may generate a sentiment data file that contains the sentiment of at least one individual involved in the situation. Using the video data, sensor data, third party data and the sentiment data file, the sentiment analysis engine may generate a safety quality value for the situation. Subsequently, the safety quality value is compared to a predetermined sentiment value to establish a safety rating and confidence interval for the situation. Furthermore, the sentiment analysis engine may generate a situational awareness file, that contains the safety rating and confidence interval, and route it to the field computing device of the officer for evaluation and implementation.
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19. A computer-implemented method, comprising:
receiving a primary video file from a primary video camera for a situation;
receiving a secondary video file from a secondary video camera for the situation;
receiving a sensor data file from a sensor associated with a police officer;
predicting a sentiment of individuals associated with the situation to generate a sentiment data file;
predicting a safety quality value based on at least one of the primary video file, secondary video file, sentiment data file, and the sensor data file;
comparing the safety quality value with a predetermined sentiment value to establish a safety rating;
generating a situational awareness file that includes the safety rating; and
routing the situational awareness file to a police officer field computing device.
1. One or more non-transitory computer-readable storage media, of a network operation center, storing computer-executable instructions that upon execution cause one or more processors to perform acts comprising:
receiving a primary video file from a primary video camera for a situation;
receiving a secondary video file from a secondary video camera for the situation;
receiving a sensor data file from a sensor;
predicting a sentiment of individuals associated with the situation to generate a sentiment data file;
predicting a safety quality value based on the primary video file, secondary video file, sentiment data file, and the sensor data file;
comparing the safety quality value with a predetermined sentiment value to establish a safety rating;
generating a situational awareness file that includes the safety rating; and
routing the situational awareness file to a police officer field computing device.
10. A system, comprising:
one or more processors; and
memory having instructions stored therein, the instructions, when executed by one or more processors, cause the one or more processors to perform acts comprising:
receiving a primary video file from a primary video camera for a situation;
receiving a secondary video file from a secondary video camera for the situation;
receiving a sensor data file from a sensor;
predicting a sentiment of individuals associated with the situation to generate a sentiment data file;
predicting a safety quality value based on the primary video file, secondary video file, sentiment data file, and the sensor data file;
comparing the safety quality value with a predetermined sentiment value to establish a safety rating;
generating a situational awareness file that includes the safety rating; and
routing the situational awareness file to a police officer field computing device.
2. The one or more non-transitory computer-readable storage media of
3. The one or more non-transitory computer-readable storage media of
in response to a determining of the safety quality value to be superior to the predetermined sentiment value, designating the situation as being safe; and
in response to a determining of the safety quality value to be inferior to the predetermined sentiment value, designating the situation as being dangerous.
4. The one or more non-transitory computer-readable storage media of
5. The one or more non-transitory computer-readable storage media of
6. The one or more non-transitory computer-readable storage media of
7. The one or more non-transitory computer-readable storage media of
8. The one or more non-transitory computer-readable storage media of
9. The one or more non-transitory computer-readable storage media of
11. The system of
12. The system of
in response to a determining of the safety quality value to be superior to the predetermined sentiment value, designating the situation as being safe; and
in response to a determining of the safety quality value to be inferior to the predetermined sentiment value, designating the situation as being dangerous.
13. The system of
14. The system of
15. The system of
16. The system of
17. The system of
18. The system of
20. The computer-implemented method of
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Police officers and security service personnel who enforce the law and protect law abiding citizens are under constant pressure to assess the situations that they are involved in. They can be under constant threat from unknown forces or individuals who are committed to break the law, threaten citizens, and harm the stability of the general population. Additionally, once dispatched to a situation, police officers may have incomplete information on the circumstances and contextual information of situations may not be available. As a result, police officers are required to continually scan the surroundings and people in their immediate proximity to continually assess the threat to themselves and the general population. This produces constant stress on the individual police officers and may introduce a level of uncertainty or error in the assessed situations.
For example, a police officer may interpret a benevolent gesture as a threat, which results in an overreaction by the police office to the situation. Alternatively, the police officer may underestimate or miss clues exhibited by individuals who are committed to do harm and, in the end, the police officer may be tangled in a situation where the overwhelming force is against the police officer. In such a case, the police officer or security service personnel may be unable to protect himself and others from the harm planned by lawless individuals.
The detailed description is depicted with reference to the accompanying figures, in which the left most digit(s) of a reference number identifies the figure in which the reference number first appears. The use of the same reference numbers in different figures indicates similar or identical items.
This disclosure is directed to techniques for implementing a system that provides sentiment analyses for situations that police officers and security service personnel may find themselves in. The system generates a measure of situational awareness and provides a police officer and/or security service personnel with data and information that deems the situation safe or dangerous for the police officer and/or security service personnel, and other individuals on the scene. The system is designed to receive a video data file from the police officer's body video camera, video data files from other video cameras, information from various sensors located on the police officer, or police vehicle and 3rd party data to determine if the situation the police officer is actively investigating is safe or dangerous. The data collected by the video cameras may include individuals or groups of individuals involved in a situation, individuals or groups of individuals in the proximate space of a situation, signs and posters involved in or near a situation, etc. The sensors may collect the police officer's vital signs to establish the police officer's sentiment or the effect of the situation on the police officer's mental disposition.
Additionally, the system may receive neighborhood data of the situation location that includes historical crime data, demographic trends, socioeconomic data, etc.
The array of video cameras and sensors may collect live data and route it to the Network Operation Center (NOC), via a network, for analysis and processing. At the NOC, the individual data streams are analyzed, using a machine learning algorithm and model, and given a rating that indicates the severity, relative danger, or probable risks of the situation. This is known as the sentiment analysis. The overall sentiment analysis, established from all data feeds, is then compared to a predetermined sentiment to assess the safety of the situation. The predetermined sentiment is a threshold value or a minimum value beyond which there is a change in the safety of the situation. Additionally, the sentiment analysis is then given a confidence interval, which is a probability of the accuracy of the sentiment analysis. The sentiment analysis and confidence interval are routed to the police officer or security service personnel for a determination of the risk to initiate an encounter with an individual or group of individuals involved in the situation.
Illustrative System Architecture
The servers 116, of the NOC 102, may interact with a primary video camera, such as primary camera 106. The primary video camera 106 may include a body camera that is secured to a police officer or a security service officer and is directed to capture the field of view that is directly in front of the police officer. The primary video camera 106 may be secured to the police officer vest, the cap, or anywhere the video camera has the vantage to capture the field of view in front of the police officer. The video feed may be stored in a data file, formatted as an Advanced Video Coding High Definition (AVCHD), Moving Picture Experts Group (MPEG), Movie Digital Video (MOV), Windows Media Video (WMV), or an Audio Video Interleave (AVI) file, prior to routing it to the NOC. In some embodiments, the primary video camera 106, may include multiple video cameras that can capture field of view in multiple directions from the police officer. In the case, the primary video camera feed may include multiple video feeds that are routed to the NOC.
The servers 116, of the NOC 102, may interact with a secondary video camera, such as secondary camera 108. The secondary video camera 108 may include a video camera that is secured to a police vehicle, ancillary police department equipment, utility poles, buildings, drones, aircraft or any video camera that is communicatively connected to the NOC. The video camera 108 may be fixed, but in another embodiment, it may rotate in the horizontal and vertical axis and its movement may be controlled remotely. The secondary video camera may provide a second vantage point to the situation, or may be pointed to individuals that are in close proximity to the situation, signs, etc. Furthermore, in additional embodiments, the NOC 102 may be communicatively connected to multiple video cameras and/or sensors, such that multiple video cameras and/or sensors provide multiple video feeds and/or data streams of the situation from multiple vantage points. For example, video cameras may be mounted to multiple drones that route multiple video and/or audio files to the NOC 102.
The servers 116, of the NOC 102, may interact with at least one sensor, such as sensor 118. The sensor 118 may be a vital sign monitor or a series of vital sign monitors that record the vital statistics of the police officer. At least one sensor may be an integral part of the police officer uniform and/or equipment to constantly monitor the police officer's health and physiological status. For example, the police officer sensors may receive and route to the NOC 102 the police officer's vital statistics, which may include heartbeat rate, blood pressure monitor, etc.
Furthermore, the servers 116, of the NOC 102, may interact with a third-party data service provider, which may provide location relevant data, or data that is relevant for the location, for analysis. The location relevant data may include statistics with respect to population, neighborhood data, and/or crime data of the area of where the situation is taking place. In additional embodiments, the third party may provide background information on the individual or individuals that the police officer may make contact with. Additionally, the third party may include information on the position of additional police officers or other emergency services.
Additionally, the servers 116 of the NOC 102, may interact with a computing device, such as a field computing device 112. The field computing device 112, of the police officer, may be a mobile communication device, a portable computer, a tablet computer, a smart phone, a slate computer, a desktop computer, or any other electronic device that is equipped with network communication components to receive and transmit data, data processing components to process data, and user interface components to receive data from, and present data to, a user. Furthermore, the field computing device 112 may include some type of short-range communication ability that is independent of the network 118.
In additional embodiments, the servers 116 of the NOC 102 may communicate with primary video camera 106, secondary video camera 108, sensor 110, field computing device 112, and third party 114 via a network 118. The network 118 may include one or more local area network (LAN), a larger network such as a wide area network (WAN), a mobile telephone network, and/or a collection of networks, or the Internet. The network may be a wired network, a wireless network, or both.
For the purposes of illustration,
The police officer involved in a situation may initiate a communication session with the NOC to assess the risk of the situation. In this case, the video feed from the primary video camera 106 may be routed to the NOC 102, via the primary video file 120, for processing and analysis. The video feed from the secondary video camera 108 may be routed to the NOC 102, via the secondary video file 122, for processing and analysis. Additionally, the data feed from sensor 110 may be routed to the NOC 102, via sensor data file 124, for processing and analysis. Based on the location services for the police officer, the NOC 102 may receive neighborhood data or location crime statistical data via the third-party data file 126, from a third-party service provider, for the area where the situation is taking place.
Subsequently, the sentiment analysis engine 104, which may be implemented by the NOC 102, can process and analyze the data. The sentiment analysis engine 104 may apply a machine learning algorithm to the data to perform a sentiment analysis for the situation and generate an assessment of the situation and/or predict a sentiment for situation. Results of the sentiment analysis may include a safety rating for the situation and a confidence interval for the safety rating.
The observed safety quality value may be used to determine whether the situation is deemed to be acceptably safe or not for the police officer to make contact with the individuals involved in the situation. If the safety quality value is deemed to be superior to the predetermined sentiment value then the situation may be deemed to be safe for the police officer to make contact with the individuals involved in the situation. If the safety quality value is deemed to be inferior to the predetermined sentiment analysis value, then the situation may be deemed to not be safe for the police officer to make contact with the individuals involved in the situation.
A confidence interval and/or confidence level of the sentiment analysis result or prediction may quantify a certainty or probability that the predicted safety is correct.
The sentiment analysis engine 104 may generate a situational awareness file 128 for the situation that may contain the predicted safety rating and confidence interval and confidence level measures for the predicted safety rating. The situational awareness file 128 may be routed to the police officer field computing device 112 for the police officer to consider when making decisions on how to respond to the situation. Based on the sentiment analysis, the police officer may deem the situation to be safe or not safe for contact, and/or may be informed of sentiments or specific qualities of risks that the situation may present.
Example Server Components
The memory 206 may be implemented using computer-readable media, such as computer storage media. Computer-readable media includes, at least, two types of computer-readable media, namely computer storage media and communications media. Computer storage media includes volatile and non-volatile, removable and non-removable media implemented in any method or technology for storage of information such as computer-readable instructions, data structures, program modules, or other data. Computer storage media includes, but is not limited to, Random-Access Memory (RAM), Dynamic Random-Access Memory (DRAM), Read-Only Memory (ROM), Electrically Erasable Programable Read-Only Memory (EEPROM), flash memory or other memory technology, CD-ROM, digital versatile disks (DVD) or other optical storage, magnetic cassettes, magnetic tape, magnetic disk storage or other magnetic storage devices, or any other non-transmission medium that can be used to store information for access by a computing device. Computer readable storage media do not consist of, and are not formed exclusively by, modulated data signals, such as a carrier wave. In contrast, communication media may embody computer-readable instructions, data structures, program modules, or other data in a modulated data signal, such as a carrier wave, or other transmission mechanism.
The processors 204 and the memory 206 of the computing devices 116 may implement an operating system 210 and the sentiment analysis engine 104. The operating system 210 may include components that enable the computing devices 116 to receive and transmit data via various interfaces (e.g., user controls, communication interface, and/or memory input/output devices), as well as process data using the processors 204 to generate output. The operating system 210 may include a display component that presents the output (e.g., display the data on an electronic display, store the data in memory, transmit the data to another electronic device, etc.). Additionally, the operating system 210 may include other components that perform various additional functions generally associated with an operating system.
The sentiment analysis engine 104 may include a data input module 212, a data modeling module 214, a data analysis module 220, and a data output module 222. The sentiment analysis engine 104 may also interact with a data store 220. These modules may include routines, program instructions, objects, and/or data structures that perform particular tasks or implement particular abstract data types.
The data input module 212 may receive a primary video file 120, a secondary video file 122, a sensor data file 124, and a third-party data file 126 via the network 118. The primary video file 120 may include visual and sound information of individual or individuals involved in the situation for analysis. The analysis may include an examination of the individual's face for identification, an examination of the individual's tone and inflection of the voice, an examination of the individual's cadence of movement, or an examination of any other traits or actions of the individual that may predict the behavior and/or status (physical, emotional, cognitive, and so forth) of the individual. The secondary video file 122 may include visual and sound information of vicinity details that are in proximity to the situation. Example vicinity details may include words, symbols, diagrams and other visual information on yard signs, posters, bumper stickers, t-shirts, and noises or other auditory signals, etc. In additional embodiments, the vicinity details may include visual and sound information of individual or individuals in proximity to the situation for analysis. For example, individuals that are in proximity to the situation may include individuals that are within the police officer's visual range. Individuals that are in proximity to the situation can also include individuals that are perceived by cameras and other sensors that are monitoring the situation. In example embodiments, individuals that are within a predetermined threshold amount of distance to the officer or the situation can be considered to be in proximity, for example within 10 feet, within 20 feet, within 50 feet, or other greater or lesser distance. In example embodiments, individuals that are within a predetermined threshold amount of travel time to the officer and/or the situation can be considered to be in proximity, for example, within a distance that the individual can traverse within a given time interval such as 10 seconds, 5 seconds, or other greater or lesser time interval specified by the officer, the officer's department, or other entity or mechanism. Different distances can apply to different individuals depending on their movement options, for example, whether the individual is on foot, has a skateboard, a bicycle, or a motor vehicle such as a motorcycle or a car. Analysis of individuals in proximity to the situation and/or the officer may include an examination of the individuals' faces for identification, an examination of the individuals' tones and inflection of the voices, an examination of the individuals' cadence of movement, or an examination of any other traits or actions of the individuals that may predict the behavior of the individuals or group of people. The sensor data file 124 may measure physiological activity such as brainwaves, heart function, breathing, muscle activity, and skin temperature of the police officer to sense changes in thinking, emotions, and behavior of the police officer prior to contact with individuals involved in the situation. The third-party data file 126 may include statistics with respect to population in the area, neighborhood data, crime data of the area of where the situation is taking place and identity information of individual or individuals involved in the situation.
The data modeling module 214 may use the primary video file 120 and secondary video file 122 to predict the sentiment of an individual or individuals involved in the situation. The modeling module 214 may include an image processing system to extract a succession or range of image frames from the video feed, creating a file for each image frame with an identifier. For example, each image frame from a video feed may be identified with a tag associated to the video camera and a date and time stamp associated with the creation of the video feed. Subsequently, each image frame may be analyzed by an image capture model 216 to predict the likely sentiment of the individual or individuals that are present at or involved in the situation. The image capture model 216 may apply an algorithm to each image frame to synthesize an individual's face from the image that is subject to various lighting conditions, viewing angles, and facial expressions. Subsequently, data that defines the individual's face may be extracted from the image frame and matched, by comparing the extracted data to a series facial images of a training model, to predict the sentiment of the individual. The label of the training model facial image, that is harmonized to the individual's face extracted from the image frame, defines or indicates sentiment of the individual present at the situation. The training model may contain a statistically significant number of images of individuals' faces, each labeled with an associated sentiment.
The data modeling module 214 may apply the image capture model to the primary video feed 120, the secondary video feed 122, or any other video feed that captures the situation. Additionally, the data modeling module 214 may extract multiple individual faces from the video feed image frames and predict the sentiment of multiple individuals. The data modeling module 214 may generate sentiment data file 218 for the individual or individuals and associated sentiments involved in the situation. The sentiment data file 218 may include at least one image frames identifier with at last one facial image and the associated sentiment label.
In additional embodiments, the data modeling module 214 may aggregate the sentiments of the individuals involved in the situation and may rate the overall sentiment of the individuals on a linear scale. The linear scale may designate the level of safety for the sentient of the group of individuals, with one designated as a safe and the opposite end of the scale designated as dangerous.
The data analysis module 220 may use machine learning algorithms to generate a safety quality value. Various classification schemes (explicitly and/or implicitly trained) and/or systems may be employed by the data analysis module 220 for the generation of the safety quality value, such as a probabilistic and/or a statistically-based analysis. A classifier is a function that maps an input attribute vector, x=(x1, x2, x3, x4, xn) to a confidence that the input belongs to a class, that is, F(x)=confidence (class). Such classification may employ a probabilistic and/or statistically-based analysis to generate a situational awareness model. A support vector machine is an example of a classifier that may be employed by the data analysis module 220. Other directed and undirected model classification approaches include, e.g., nave Bayes, Bayesian networks, decision trees, neural networks, fuzzy logic models, and probabilistic classification models providing different patterns of independence may also be employed.
The training data that is used by the data analysis module 220 to generate the situational awareness model may include the sentiment data file 128, the third-party data file, the primary video file 120, the secondary video file 122, and the sensor data file 124. The training data may further include previously calculated safety quality values at various locations/neighborhoods. The use of such safety quality values may reduce model generation complexity and/or decrease the generation time of the situational awareness file.
In various embodiments, the data analysis module 220 may predict a safety quality value, or vector of safety quality values, for a given situation. In other words, given a situation, a sentiment model function CM (x, y, z) may provide a safety quality value RS, or a set of safety quality values R (RS1, RS2, . . . , RSN). The values in the set values R are not necessarily order dependent. The sentiment function CM theoretically provides safety quality values for every situation for the domain of the function. In example embodiments, the domain of the function ranges from safe situations to very dangerous situations.
One difficulty in generating a deterministic sentiment model function CM and a safety quality value is that situations and sentiments of individuals are not necessarily static. For example, a neighborhood's crime data generally changes slowly over time, but sentiments of individuals or groups may change very quickly. A sudden action or event may drastically change the overall sentiment of an individual or a group. Accordingly, a proper sentiment model function takes into account not just an individual's sentiment, but also the sentiment of individuals in the proximity of the situation, the sentiment of the police officer, neighborhood data, signs and banners in the proximity of the situation and other environmental inputs. Such an extended sentiment model function CME (x, y, z, N1, N2 . . . Nm, E1, E2, . . . En) may generate RS or set R given not only the sentiment data file 218, but sensor data N1 . . . Nm of the police officer, third-party data E1 . . . En of the neighborhood, etc. Thus, the extended sentiment model CME may generate gradients not just for sentiments for individuals, but also for police officer, other individuals in the proximity of the situation, signs, neighborhoods, and any other environmental conditions. To address the wide range of dynamic changes, the data analysis module 220 may generate an initial safety quality value based on training data. Training data may be collected from different sources, in which the primary training data may be collected via third party data providing crime data for those locations/neighborhoods.
The training data may be supplemented with data extrapolated from other locations/neighborhoods. Specifically, the data analysis module 220 may obtain data, extrapolate such data, and cluster the data based on location/neighborhood conditions and/or sensor and video data. As such, the data analysis module 220 may extrapolate and update safety quality values. In practice, as real-world measured safety quality values are collected, the data analysis module 220 may preferentially use real-world data over training data. Accordingly, the use of training data by the data analysis module 220 may be phased out or updated as historical data is collected. Subsequently, the data analysis module 220 may compare the signal quality value to a predetermined sentiment value. Additionally, the training data and real-world measured data may be used to establish a confidence interval and/or a confidence level for the safety rating value.
The comparison of the safety quality value to the predetermined sentiment value may result in a safety rating for the situation. The predetermined sentiment value may be an established and inputted setting by a user. When the safety quality value fails with respect to the predetermined sentiment value, the safety rating for the situation is predicted to be dangerous. When the safety quality value is superior to the predetermined sentiment value, the safety rating for the situation is predicted to be safe.
The data analysis module 220 may establish a confidence level and a confidence interval for the safety rating as an indicator for the stability of the predicted safety quality value and safety rating. The confidence level and interval may be determined by any series of statistical calculations from the data observed from a sample constructed at a specific confidence level. The statistical calculations may include the computation of mean and standard deviation for the training and real-world data. The confidence interval may establish upper and lower bounds of confidence of the predicted safety rating value.
Subsequently, the data output module 222 may generate a situational awareness file 128 that is specific to the situation and it includes the safety rating and confidence interval. The situational awareness file 128 may be routed to the field computing device 112, of the police officer, to be used as an evaluation tool for the situation.
The data store module 224 may store data that is used by the various modules of the sentiment analysis engine 104. The data store module 224 may include one or more databases, such as relational databases, object databases, object-relational databases, and/or key-value databases. In various embodiments, the data store module 224 may store the training data and updates, safety quality values and updates, safety ratings and updates, and confidence intervals.
Illustrative Operations
At block 302, a Network Operation Center (NOC), via a network, may receive a primary video file from a primary video camera of a primary police officer involved in a situation.
At block 304, a Network Operation Center (NOC), via a network, may receive a secondary video file from a secondary video camera of a secondary police officer involved in a situation. In lieu of being attached to a secondary police officer, the secondary video camera may be installed on police equipment, neighboring buildings, vehicles, towers, poles, etc.
At block 306, a Network Operation Center (NOC), via a network, may receive a sensor data file, from a vital sign sensor, that provides the vital signs for the police officer.
At block 308, a Network Operation Center (NOC), via a network, may receive a third-party data file, from a third-party, that provides the location/neighborhood crime data and statistics.
At block 310, a sentiment analysis engine of the NOC, may extract the images of individual faces from the video image files and may apply an algorithm to predict a sentiment of the individuals involved in the situation. The sentiment analysis engine may generate a sentiment data file for the situation that lists the individual or individuals involved in the situation and a predicted sentiment for each individual. Additionally, the sentiment analysis engine may aggregate the sentiments of groups of individuals and may generate an overall sentiment for the entire group.
At block 312, the sentiment analysis engine may implement a machine learning algorithm to predict a safety quality value that is based on the sentiment data file, the primary video file, the secondary video file, the sensor data file and the third-party file.
At block 314, the sentiment analysis engine may compare the safety quality value to a predetermined sentiment value to establish a safety rating for the situation. If the safety quality value is deemed to be superior to the predetermined sentiment value, the sentiment analysis engine establishes a safe safety rating for the situation. If the safety quality value is deemed to be inferior to the predetermined sentiment value, the sentiment analysis engine establishes a dangerous safety rating for the situation.
At block 316, the sentiment analysis engine computes a confidence interval for the safety rating that is based on the training data or developed real-world measured safety quality values.
At block 318, the sentiment analysis engine may develop a situation awareness file that contains the safety rating and the confidence interval for the situation.
At block 320, the network operation center routes the situational awareness file to the police officer field computing device for evaluation and use in making contact with the individual or group of individuals involved in the situation.
At block 404, the sentiment analysis engine may compare the safety quality value for the situation with a predetermined sentiment value to predict a safety rating for the situation.
At decision block 406, if the sentiment analysis engine establishes that the safety quality value is superior to the predetermined sentiment value (“yes” at decision block 404), the process 400 may proceed to block 408. If the sentiment analysis engine establishes that the safety quality value is inferior to the predetermined sentiment value (“no” at decision block 404), the process 400 may proceed to block 410.
At block 408, the sentiment analysis engine labels the situation as safe.
At block 410, the sentiment analysis engine labels the situation as dangerous.
Although the subject matter has been described in language specific to the structural features and/or methodological acts, it is to be understood that the subject matter defined in the appended claims is not necessarily limited to the specific features or acts described. Rather, the specific features and acts are disclosed as exemplary forms of implementing the claims.
Guzik, Thomas, Adeel, Muhammad, Kucera, Ryan
Patent | Priority | Assignee | Title |
11769324, | Apr 19 2021 | Bank of America Corporation | System for detecting unauthorized activity |
Patent | Priority | Assignee | Title |
10324773, | Sep 17 2015 | SALESFORCE COM, INC | Processing events generated by internet of things (IoT) |
10460014, | Apr 12 2010 | GOOGLE LLC | Scrolling in large hosted data set |
10540883, | Jun 19 2018 | Life360, Inc. | Methods and systems for audio-based danger detection and alert |
10902955, | May 01 2020 | Georgetown University | Detecting COVID-19 using surrogates |
11238290, | Oct 26 2016 | GOOGLE LLC | Timeline-video relationship processing for alert events |
6760744, | Oct 09 1998 | Fast Search & Transfer ASA | Digital processing system |
7917888, | Jan 22 2001 | Symbol Technologies, LLC | System and method for building multi-modal and multi-channel applications |
8452722, | Jan 11 2002 | SAP SE | Method and system for searching multiple data sources |
8606844, | May 29 2003 | International Business Machines Corporation | System and method for automatically segmenting and populating a distributed computing problem |
8688320, | Jan 11 2011 | Robert Bosch GmbH | Vehicle information system with customizable user interface |
9110774, | Mar 15 2013 | T-MOBILE INNOVATIONS LLC | System and method of utilizing driving profiles via a mobile device |
9264678, | Jul 15 2005 | Barco N.V. | Network displays and method of their operation |
9449229, | Jul 07 2014 | GOOGLE LLC | Systems and methods for categorizing motion event candidates |
9483732, | Feb 08 2013 | High value information alert and reporting system and method | |
9485474, | Dec 27 2013 | Electronics and Telecommunications Research Institute | System and method for learning driving information in vehicle |
9681104, | Nov 13 2012 | GENERAC HOLDINGS INC ; GENERAC POWER SYSTEMS, INC | Distributed control of a heterogeneous video surveillance network |
9723251, | Apr 23 2013 | Technique for image acquisition and management | |
9738125, | May 17 2016 | CORTLAND CAPITAL MARKET SERVICES LLC | Communication device, system, and method for active control of external vehicle components |
9755890, | Feb 22 2010 | Microsoft Technology Licensing, LLC | Incrementally managing distributed configuration data |
9832205, | Mar 15 2013 | HCL Technologies Limited | Cross provider security management functionality within a cloud service brokerage platform |
9848312, | Oct 23 2015 | Motorola Mobility LLC | Personal safety monitoring |
9852132, | Nov 25 2014 | CHEGG, INC | Building a topical learning model in a content management system |
9886261, | Dec 10 2015 | Amazon Technologies, Inc | System to prioritize update distribution to devices |
20030081127, | |||
20030095688, | |||
20030163512, | |||
20030208679, | |||
20060257001, | |||
20080147267, | |||
20080303903, | |||
20090150017, | |||
20090210455, | |||
20090248711, | |||
20090284359, | |||
20100036560, | |||
20100144318, | |||
20110205068, | |||
20110302151, | |||
20120084747, | |||
20130039542, | |||
20130344856, | |||
20130347005, | |||
20140343796, | |||
20150089019, | |||
20150341370, | |||
20160042767, | |||
20160086397, | |||
20160153801, | |||
20160190859, | |||
20160248856, | |||
20160371553, | |||
20160378607, | |||
20170011324, | |||
20170048482, | |||
20170148027, | |||
20170161323, | |||
20170161409, | |||
20170164062, | |||
20180079413, | |||
20180145923, | |||
20180285759, | |||
20180365909, | |||
20190019122, | |||
20190026665, | |||
20190043351, | |||
20190054925, | |||
20190140886, | |||
20190325354, | |||
20200007827, | |||
20200072637, | |||
20200074156, | |||
20200081899, | |||
20200145620, | |||
20200151360, | |||
20200172112, | |||
20200211216, | |||
20200304854, | |||
20200312046, | |||
20200351381, | |||
20210076002, | |||
20210089374, | |||
20210133808, | |||
20210272702, | |||
20210297929, | |||
20210377205, | |||
20220014907, | |||
20220169258, | |||
CN109671266, | |||
JP2008204219, | |||
KR20130010400, | |||
KR20190086134, | |||
WO2010056891, |
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